2024 : 4 : 29
Kamran Chapi

Kamran Chapi

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 55345306000
Faculty: Faculty of Natural Resources
Address: Department of Nature Reources Rehabilitation, Faculty of Natural Resources, University of Kurdistan, Pasdaran Blvd., Sanandaj, Kurdistan Province, IR Iran, POB 416, Postal Code 6617715175
Phone: +98-8733627721 Ext. 4321

Research

Title
Novel GIS Based Machine Learning Algorithms for Shallow Landslide Susceptibility Mapping
Type
JournalPaper
Keywords
landslide; alternating decision tree; GIS; machine learning algorithms; Iran
Year
2018
Journal SENSORS
DOI
Researchers Ataollah Shirzadi ، Karim solaimani ، Mahmood Habibnejhad ، Ataollah Kavian ، Kamran Chapi ، Himan Shahabi ، Wei Chen ، Khabat Khosravi ، Binh Thai Pham ، Biswajeet Pradhan ، Anuar Ahmad ، Baharin Ben Ahmad ، DieuTien Bui

Abstract

The main objective of this research was to introduce a novel machine learning algorithm of alternating decision tree (ADTree) based on the multiboost (MB), bagging (BA), rotation forest (RF) and random subspace (RS) ensemble algorithms under two scenarios of different sample sizes and raster resolutions for spatial prediction of shallow landslides around Bijar City, Kurdistan Province, Iran. The evaluation of modeling process was checked by some statistical measures and area under the receiver operating characteristic curve (AUROC). Results show that, for combination of sample sizes of 60%/40% and 70%/30% with a raster resolution of 10 m, the RS model, while, for 80%/20% and 90%/10% with a raster resolution of 20 m, the MB model obtained a high goodness-of-fit and prediction accuracy. The RS-ADTree and MB-ADTree ensemble models outperformed the ADTree model in two scenarios. Overall, MB-ADTree in sample size of 80%/20% with a resolution of 20 m (area under the curve (AUC) = 0.942) and sample size of 60%/40% with a resolution of 10 m (AUC = 0.845) had the highest and lowest prediction accuracy, respectively. The findings confirm that the newly proposed models are very promising alternative tools to assist planners and decision makers in the task of managing landslide prone areas.